Recent Changes - Search:


Home Page
MAPF Info
MAPF News
Mailing List
Meetings
Publications
Researchers
Benchmarks
Software
Apps
Tutorials
Class Projects

[Internal]

Publication

H. Ma, S. Kumar and S. Koenig. Multi-Agent Path Finding with Delay Probabilities. In Proceedings of the AAAI Conference on Artificial Intelligence (AAAI), pages 3605-3612, 2017.


Abstract: Several recently developed Multi-Agent Path Finding (MAPF) solvers scale to large MAPF instances by searching for MAPF plans on 2 levels: The high-level search resolves collisions between agents, and the low-level search plans paths for single agents under the constraints imposed by the high-level search. We make the following contributions to solve the MAPF problem with imperfect plan execution with small average makespans: First, we formalize the MAPF Problem with Delay Probabilities (MAPF-DP), define valid MAPF-DP plans and propose the use of robust plan-execution policies for valid MAPF-DP plans to control how each agent proceeds along its path. Second, we discuss 2 classes of decentralized robust plan-execution policies (called Fully Synchronized Policies and Minimal Communication Policies) that prevent collisions during plan execution for valid MAPF-DP plans. Third, we present a 2-level MAPF-DP solver (called Approximate Minimization in Expectation) that generates valid MAPF-DP plans.


Download the paper in pdf.

Edit - History - Print - Recent Changes - Search
Page last modified on December 30, 2024, at 09:06 AM